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Machine Learning Informs RNA-Binding Chemical Space

  1. Author:
    Yazdani, Kamyar
    Jordan, Deondre
    Yang,Mo
    Fullenkamp,Chris
    Schneekloth,Jay
    Calabrese,Dave
    Boer, Robert E
    Hilimire, Thomas A
    Allen, Timothy E H
    Khan, Rabia T
  2. Author Address

    National Cancer Institute, Chemical Biology Laboratory, UNITED STATES., National Cancer Institute, Chemical Biology Laboratory, Frederick National Lab, Building 376, Room 225C, 21702, Frederick, UNITED STATES., NCI-Frederick: National Cancer Institute at Frederick, Chemical Biology Laboratory, UNITED STATES., Ladder Therapeutics, N/A, UNITED STATES.,
    1. Year: 2022
    2. Date: Dec 30
    3. Epub Date: 2022 12 30
  1. Journal: Angewandte Chemie (International ed. in English)
  2. Type of Article: Article
  1. Abstract:

    Small molecule targeting of RNA has emerged as a new frontier in medicinal chemistry, but compared to the protein targeting literature our understanding of chemical matter that binds to RNA is limited. In this study, we reported Repository Of BInders to Nucleic acids (ROBIN), a new library of nucleic acid binders identified by small molecule microarray (SMM) screening. The complete results of 36 individual nucleic acid SMM screens against a library of 24,572 small molecules were reported (including a total of 1,627,072 interactions assayed). A set of 2,003 RNA-binding small molecules was identified, representing the largest fully public, experimentally derived library of its kind to date. Machine learning was used to develop highly predictive and interpretable models to characterize RNA-binding molecules. This work demonstrates that machine learning algorithms applied to experimentally derived sets of RNA binders are a powerful method to inform RNA-targeted chemical space. © 2022 Wiley-VCH GmbH.

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External Sources

  1. DOI: 10.1002/anie.202211358
  2. PMID: 36584293

Library Notes

  1. Fiscal Year: FY2022-2023
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